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YOLOv5 🚀 in PyTorch > ONNX > CoreML > TFLite
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Problem of occlude or not vivid objects #9541

Closed PasaImage closed 2 years ago

PasaImage commented 2 years ago

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Question

I have a data-set of objects some of which are heavily occluded, or very small or very blur. Training a detection deep learning model such as YOLO5 on my data-set leads to high false positive rate. If I exclude the aforementioned hard samples (occluded, small, etc.) from my data-set, false positive rate will decrease but so will the detection performance of model (I need a model to detect both normal and hard samples). Has anyone encountered such issue before? I will be grateful if I could get any suggestion on how to tackle this problem. Thank you in advance.

Additional

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glenn-jocher commented 2 years ago

@PasaImage 👋 Hello! Thanks for asking about improving YOLOv5 🚀 training results.

Most of the time good results can be obtained with no changes to the models or training settings, provided your dataset is sufficiently large and well labelled. If at first you don't get good results, there are steps you might be able to take to improve, but we always recommend users first train with all default settings before considering any changes. This helps establish a performance baseline and spot areas for improvement.

If you have questions about your training results we recommend you provide the maximum amount of information possible if you expect a helpful response, including results plots (train losses, val losses, P, R, mAP), PR curve, confusion matrix, training mosaics, test results and dataset statistics images such as labels.png. All of these are located in your project/name directory, typically yolov5/runs/train/exp.

We've put together a full guide for users looking to get the best results on their YOLOv5 trainings below.

Dataset

COCO Analysis

Model Selection

Larger models like YOLOv5x and YOLOv5x6 will produce better results in nearly all cases, but have more parameters, require more CUDA memory to train, and are slower to run. For mobile deployments we recommend YOLOv5s/m, for cloud deployments we recommend YOLOv5l/x. See our README table for a full comparison of all models.

YOLOv5 Models

Training Settings

Before modifying anything, first train with default settings to establish a performance baseline. A full list of train.py settings can be found in the train.py argparser.

Further Reading

If you'd like to know more a good place to start is Karpathy's 'Recipe for Training Neural Networks', which has great ideas for training that apply broadly across all ML domains: http://karpathy.github.io/2019/04/25/recipe/

Good luck 🍀 and let us know if you have any other questions!

github-actions[bot] commented 2 years ago

👋 Hello, this issue has been automatically marked as stale because it has not had recent activity. Please note it will be closed if no further activity occurs.

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